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Real-time stepwise supervised learning algorithm for time-series prediction and system identification
Chen C.L.Philip; LeClair Steven R.
1996
Source PublicationIEEE International Conference on Neural Networks - Conference Proceedings
Volume4
Pages2009-2014
AbstractThis paper presents a new neural network architecture and a real-time stepwise supervised learning algorithm that rapidly updates the weights of the network while importing new observations. The most significant advantage of the stepwise approach is that the weights of the network can be easily updated so that retraining is not necessary when new data or observations are made available later after the neural network is trained. This feature makes the stepwise updating algorithm perfect for time-series prediction and system identification. The network has also been tested on several data sets and the experimental results are compared with some conventional networks in which more complex architectures and more costly training are needed.
URLView the original
Language英語English
Fulltext Access
Document TypeConference paper
CollectionUniversity of Macau
AffiliationWright State University
Recommended Citation
GB/T 7714
Chen C.L.Philip,LeClair Steven R.. Real-time stepwise supervised learning algorithm for time-series prediction and system identification[C], 1996, 2009-2014.
APA Chen C.L.Philip., & LeClair Steven R. (1996). Real-time stepwise supervised learning algorithm for time-series prediction and system identification. IEEE International Conference on Neural Networks - Conference Proceedings, 4, 2009-2014.
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